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Wikipedia

Linear form

In mathematics, a linear form (also known as a linear functional,[1] a one-form, or a covector) is a linear map from a vector space to its field of scalars (often, the real numbers or the complex numbers).

If V is a vector space over a field k, the set of all linear functionals from V to k is itself a vector space over k with addition and scalar multiplication defined pointwise. This space is called the dual space of V, or sometimes the algebraic dual space, when a topological dual space is also considered. It is often denoted Hom(V, k),[2] or, when the field k is understood, ;[3] other notations are also used, such as ,[4][5] or [2] When vectors are represented by column vectors (as is common when a basis is fixed), then linear functionals are represented as row vectors, and their values on specific vectors are given by matrix products (with the row vector on the left).

Examples

The constant zero function, mapping every vector to zero, is trivially a linear functional. Every other linear functional (such as the ones below) is surjective (that is, its range is all of k).

  • Indexing into a vector: The second element of a three-vector is given by the one-form   That is, the second element of   is
     
  • Mean: The mean element of an  -vector is given by the one-form   That is,
     
  • Sampling: Sampling with a kernel can be considered a one-form, where the one-form is the kernel shifted to the appropriate location.
  • Net present value of a net cash flow,   is given by the one-form   where   is the discount rate. That is,
     

Linear functionals in Rn

Suppose that vectors in the real coordinate space   are represented as column vectors

 

For each row vector   there is a linear functional   defined by

 
and each linear functional can be expressed in this form.

This can be interpreted as either the matrix product or the dot product of the row vector   and the column vector  :

 

Trace of a square matrix

The trace   of a square matrix   is the sum of all elements on its main diagonal. Matrices can be multiplied by scalars and two matrices of the same dimension can be added together; these operations make a vector space from the set of all   matrices. The trace is a linear functional on this space because   and   for all scalars   and all   matrices  

(Definite) Integration

Linear functionals first appeared in functional analysis, the study of vector spaces of functions. A typical example of a linear functional is integration: the linear transformation defined by the Riemann integral

 
is a linear functional from the vector space   of continuous functions on the interval   to the real numbers. The linearity of   follows from the standard facts about the integral:
 

Evaluation

Let   denote the vector space of real-valued polynomial functions of degree   defined on an interval   If   then let   be the evaluation functional

 
The mapping   is linear since
 

If   are   distinct points in   then the evaluation functionals     form a basis of the dual space of   (Lax (1996) proves this last fact using Lagrange interpolation).

Non-example

A function   having the equation of a line   with   (for example,  ) is not a linear functional on  , since it is not linear.[nb 1] It is, however, affine-linear.

Visualization

 
Geometric interpretation of a 1-form α as a stack of hyperplanes of constant value, each corresponding to those vectors that α maps to a given scalar value shown next to it along with the "sense" of increase. The   zero plane is through the origin.

In finite dimensions, a linear functional can be visualized in terms of its level sets, the sets of vectors which map to a given value. In three dimensions, the level sets of a linear functional are a family of mutually parallel planes; in higher dimensions, they are parallel hyperplanes. This method of visualizing linear functionals is sometimes introduced in general relativity texts, such as Gravitation by Misner, Thorne & Wheeler (1973).

Applications

Application to quadrature

If   are   distinct points in [a, b], then the linear functionals   defined above form a basis of the dual space of Pn, the space of polynomials of degree   The integration functional I is also a linear functional on Pn, and so can be expressed as a linear combination of these basis elements. In symbols, there are coefficients   for which

 
for all   This forms the foundation of the theory of numerical quadrature.[6]

In quantum mechanics

Linear functionals are particularly important in quantum mechanics. Quantum mechanical systems are represented by Hilbert spaces, which are antiisomorphic to their own dual spaces. A state of a quantum mechanical system can be identified with a linear functional. For more information see bra–ket notation.

Distributions

In the theory of generalized functions, certain kinds of generalized functions called distributions can be realized as linear functionals on spaces of test functions.

Dual vectors and bilinear forms

 
Linear functionals (1-forms) α, β and their sum σ and vectors u, v, w, in 3d Euclidean space. The number of (1-form) hyperplanes intersected by a vector equals the inner product.[7]

Every non-degenerate bilinear form on a finite-dimensional vector space V induces an isomorphism VV : vv such that

 

where the bilinear form on V is denoted   (for instance, in Euclidean space,   is the dot product of v and w).

The inverse isomorphism is VV : vv, where v is the unique element of V such that

 
for all  

The above defined vector vV is said to be the dual vector of  

In an infinite dimensional Hilbert space, analogous results hold by the Riesz representation theorem. There is a mapping VV from V into its continuous dual space V.

Relationship to bases

Basis of the dual space

Let the vector space V have a basis  , not necessarily orthogonal. Then the dual space   has a basis   called the dual basis defined by the special property that

 

Or, more succinctly,

 

where δ is the Kronecker delta. Here the superscripts of the basis functionals are not exponents but are instead contravariant indices.

A linear functional   belonging to the dual space   can be expressed as a linear combination of basis functionals, with coefficients ("components") ui,

 

Then, applying the functional   to a basis vector   yields

 

due to linearity of scalar multiples of functionals and pointwise linearity of sums of functionals. Then

 

So each component of a linear functional can be extracted by applying the functional to the corresponding basis vector.

The dual basis and inner product

When the space V carries an inner product, then it is possible to write explicitly a formula for the dual basis of a given basis. Let V have (not necessarily orthogonal) basis   In three dimensions (n = 3), the dual basis can be written explicitly

 
for   where ε is the Levi-Civita symbol and   the inner product (or dot product) on V.

In higher dimensions, this generalizes as follows

 
where   is the Hodge star operator.

Over a ring

Modules over a ring are generalizations of vector spaces, which removes the restriction that coefficients belong to a field. Given a module M over a ring R, a linear form on M is a linear map from M to R, where the latter is considered as a module over itself. The space of linear forms is always denoted Homk(V, k), whether k is a field or not. It is an right module, if V is a left module.

The existence of "enough" linear forms on a module is equivalent to projectivity.[8]

Dual Basis Lemma — An R-module M is projective if and only if there exists a subset   and linear forms   such that, for every   only finitely many   are nonzero, and

 

Change of field

Suppose that   is a vector space over   Restricting scalar multiplication to   gives rise to a real vector space[9]   called the realification of   Any vector space   over   is also a vector space over   endowed with a complex structure; that is, there exists a real vector subspace   such that we can (formally) write   as  -vector spaces.

Real versus complex linear functionals

Every linear functional on   is complex-valued while every linear functional on   is real-valued. If   then a linear functional on either one of   or   is non-trivial (meaning not identically  ) if and only if it is surjective (because if   then for any scalar    ), where the image of a linear functional on   is   while the image of a linear functional on   is   Consequently, the only function on   that is both a linear functional on   and a linear function on   is the trivial functional; in other words,   where   denotes the space's algebraic dual space. However, every  -linear functional on   is an  -linear operator (meaning that it is additive and homogeneous over  ), but unless it is identically   it is not an  -linear functional on   because its range (which is  ) is 2-dimensional over   Conversely, a non-zero  -linear functional has range too small to be a  -linear functional as well.

Real and imaginary parts

If   then denote its real part by   and its imaginary part by   Then   and   are linear functionals on   and   The fact that   for all   implies that for all  [9]

 
and consequently, that   and  [10]

The assignment   defines a bijective[10]  -linear operator   whose inverse is the map   defined by the assignment   that sends   to the linear functional   defined by

 
The real part of   is   and the bijection   is an  -linear operator, meaning that   and   for all   and  [10] Similarly for the imaginary part, the assignment   induces an  -linear bijection   whose inverse is the map   defined by sending   to the linear functional on   defined by  

This relationship was discovered by Henry Löwig in 1934 (although it is usually credited to F. Murray),[11] and can be generalized to arbitrary finite extensions of a field in the natural way. It has many important consequences, some of which will now be described.

Properties and relationships

Suppose   is a linear functional on   with real part   and imaginary part  

Then   if and only if   if and only if  

Assume that   is a topological vector space. Then   is continuous if and only if its real part   is continuous, if and only if  's imaginary part   is continuous. That is, either all three of   and   are continuous or none are continuous. This remains true if the word "continuous" is replaced with the word "bounded". In particular,   if and only if   where the prime denotes the space's continuous dual space.[9]

Let   If   for all scalars   of unit length (meaning  ) then[proof 1][12]

 
Similarly, if   denotes the complex part of   then   implies
 
If   is a normed space with norm   and if   is the closed unit ball then the supremums above are the operator norms (defined in the usual way) of   and   so that [12]
 
This conclusion extends to the analogous statement for polars of balanced sets in general topological vector spaces.
  • If   is a complex Hilbert space with a (complex) inner product   that is antilinear in its first coordinate (and linear in the second) then   becomes a real Hilbert space when endowed with the real part of   Explicitly, this real inner product on   is defined by   for all   and it induces the same norm on   as   because   for all vectors   Applying the Riesz representation theorem to   (resp. to  ) guarantees the existence of a unique vector   (resp.  ) such that   (resp.  ) for all vectors   The theorem also guarantees that   and   It is readily verified that   Now   and the previous equalities imply that   which is the same conclusion that was reached above.

In infinite dimensions

Below, all vector spaces are over either the real numbers   or the complex numbers  

If   is a topological vector space, the space of continuous linear functionals — the continuous dual — is often simply called the dual space. If   is a Banach space, then so is its (continuous) dual. To distinguish the ordinary dual space from the continuous dual space, the former is sometimes called the algebraic dual space. In finite dimensions, every linear functional is continuous, so the continuous dual is the same as the algebraic dual, but in infinite dimensions the continuous dual is a proper subspace of the algebraic dual.

A linear functional f on a (not necessarily locally convex) topological vector space X is continuous if and only if there exists a continuous seminorm p on X such that  [13]

Characterizing closed subspaces

Continuous linear functionals have nice properties for analysis: a linear functional is continuous if and only if its kernel is closed,[14] and a non-trivial continuous linear functional is an open map, even if the (topological) vector space is not complete.[15]

Hyperplanes and maximal subspaces

A vector subspace   of   is called maximal if   (meaning   and  ) and does not exist a vector subspace   of   such that   A vector subspace   of   is maximal if and only if it is the kernel of some non-trivial linear functional on   (that is,   for some linear functional   on   that is not identically 0). An affine hyperplane in   is a translate of a maximal vector subspace. By linearity, a subset   of   is a affine hyperplane if and only if there exists some non-trivial linear functional   on   such that  [11] If   is a linear functional and   is a scalar then   This equality can be used to relate different level sets of   Moreover, if   then the kernel of   can be reconstructed from the affine hyperplane   by  

Relationships between multiple linear functionals

Any two linear functionals with the same kernel are proportional (i.e. scalar multiples of each other). This fact can be generalized to the following theorem.

Theorem[16][17] — If   are linear functionals on X, then the following are equivalent:

  1. f can be written as a linear combination of  ; that is, there exist scalars   such that  ;
  2.  ;
  3. there exists a real number r such that   for all   and all  

If f is a non-trivial linear functional on X with kernel N,   satisfies   and U is a balanced subset of X, then   if and only if   for all  [15]

Hahn–Banach theorem

Any (algebraic) linear functional on a vector subspace can be extended to the whole space; for example, the evaluation functionals described above can be extended to the vector space of polynomials on all of   However, this extension cannot always be done while keeping the linear functional continuous. The Hahn–Banach family of theorems gives conditions under which this extension can be done. For example,

Hahn–Banach dominated extension theorem[18](Rudin 1991, Th. 3.2) — If   is a sublinear function, and   is a linear functional on a linear subspace   which is dominated by p on M, then there exists a linear extension   of f to the whole space X that is dominated by p, i.e., there exists a linear functional F such that

 
for all   and
 
for all  

Equicontinuity of families of linear functionals

Let X be a topological vector space (TVS) with continuous dual space  

For any subset H of   the following are equivalent:[19]

  1. H is equicontinuous;
  2. H is contained in the polar of some neighborhood of   in X;
  3. the (pre)polar of H is a neighborhood of   in X;

If H is an equicontinuous subset of   then the following sets are also equicontinuous: the weak-* closure, the balanced hull, the convex hull, and the convex balanced hull.[19] Moreover, Alaoglu's theorem implies that the weak-* closure of an equicontinuous subset of   is weak-* compact (and thus that every equicontinuous subset weak-* relatively compact).[20][19]

See also

Notes

Footnotes

  1. ^ For instance,  

Proofs

  1. ^ It is true if   so assume otherwise. Since   for all scalars   it follows that   If   then let   and   be such that   and   where if   then take  Then   and because   is a real number,   By assumption   so   Since   was arbitrary, it follows that    

References

  1. ^ Axler (2015) p. 101, §3.92
  2. ^ a b Tu (2011) p. 19, §3.1
  3. ^ Katznelson & Katznelson (2008) p. 37, §2.1.3
  4. ^ Axler (2015) p. 101, §3.94
  5. ^ Halmos (1974) p. 20, §13
  6. ^ Lax 1996
  7. ^ Misner, Thorne & Wheeler (1973) p. 57
  8. ^ Clark, Pete L. Commutative Algebra (PDF). Unpublished. Lemma 3.12.
  9. ^ a b c Rudin 1991, pp. 57.
  10. ^ a b c Narici & Beckenstein 2011, pp. 9–11.
  11. ^ a b Narici & Beckenstein 2011, pp. 10–11.
  12. ^ a b Narici & Beckenstein 2011, pp. 126–128.
  13. ^ Narici & Beckenstein 2011, p. 126.
  14. ^ Rudin 1991, Theorem 1.18
  15. ^ a b Narici & Beckenstein 2011, p. 128.
  16. ^ Rudin 1991, pp. 63–64.
  17. ^ Narici & Beckenstein 2011, pp. 1–18.
  18. ^ Narici & Beckenstein 2011, pp. 177–220.
  19. ^ a b c Narici & Beckenstein 2011, pp. 225–273.
  20. ^ Schaefer & Wolff 1999, Corollary 4.3.

Bibliography

linear, form, mathematics, linear, form, also, known, linear, functional, form, covector, linear, from, vector, space, field, scalars, often, real, numbers, complex, numbers, vector, space, over, field, linear, functionals, from, itself, vector, space, over, w. In mathematics a linear form also known as a linear functional 1 a one form or a covector is a linear map from a vector space to its field of scalars often the real numbers or the complex numbers If V is a vector space over a field k the set of all linear functionals from V to k is itself a vector space over k with addition and scalar multiplication defined pointwise This space is called the dual space of V or sometimes the algebraic dual space when a topological dual space is also considered It is often denoted Hom V k 2 or when the field k is understood V displaystyle V 3 other notations are also used such as V displaystyle V 4 5 V displaystyle V or V displaystyle V vee 2 When vectors are represented by column vectors as is common when a basis is fixed then linear functionals are represented as row vectors and their values on specific vectors are given by matrix products with the row vector on the left Contents 1 Examples 1 1 Linear functionals in Rn 1 2 Trace of a square matrix 1 3 Definite Integration 1 4 Evaluation 1 5 Non example 2 Visualization 3 Applications 3 1 Application to quadrature 3 2 In quantum mechanics 3 3 Distributions 4 Dual vectors and bilinear forms 5 Relationship to bases 5 1 Basis of the dual space 5 2 The dual basis and inner product 6 Over a ring 7 Change of field 7 1 Real versus complex linear functionals 7 2 Real and imaginary parts 7 3 Properties and relationships 8 In infinite dimensions 8 1 Characterizing closed subspaces 8 1 1 Hyperplanes and maximal subspaces 8 1 2 Relationships between multiple linear functionals 8 2 Hahn Banach theorem 8 3 Equicontinuity of families of linear functionals 9 See also 10 Notes 10 1 Footnotes 10 2 Proofs 11 References 12 BibliographyExamples EditThe constant zero function mapping every vector to zero is trivially a linear functional Every other linear functional such as the ones below is surjective that is its range is all of k Indexing into a vector The second element of a three vector is given by the one form 0 1 0 displaystyle 0 1 0 That is the second element of x y z displaystyle x y z is 0 1 0 x y z y displaystyle 0 1 0 cdot x y z y Mean The mean element of an n displaystyle n vector is given by the one form 1 n 1 n 1 n displaystyle left 1 n 1 n ldots 1 n right That is mean v 1 n 1 n 1 n v displaystyle operatorname mean v left 1 n 1 n ldots 1 n right cdot v Sampling Sampling with a kernel can be considered a one form where the one form is the kernel shifted to the appropriate location Net present value of a net cash flow R t displaystyle R t is given by the one form w t 1 i t displaystyle w t 1 i t where i displaystyle i is the discount rate That is N P V R t w R t 0 R t 1 i t d t displaystyle mathrm NPV R t langle w R rangle int t 0 infty frac R t 1 i t dt Linear functionals in Rn Edit Suppose that vectors in the real coordinate space R n displaystyle mathbb R n are represented as column vectorsx x 1 x n displaystyle mathbf x begin bmatrix x 1 vdots x n end bmatrix For each row vector a a 1 a n displaystyle mathbf a begin bmatrix a 1 amp cdots amp a n end bmatrix there is a linear functional f a displaystyle f mathbf a defined byf a x a 1 x 1 a n x n displaystyle f mathbf a mathbf x a 1 x 1 cdots a n x n and each linear functional can be expressed in this form This can be interpreted as either the matrix product or the dot product of the row vector a displaystyle mathbf a and the column vector x displaystyle mathbf x f a x a x a 1 a n x 1 x n displaystyle f mathbf a mathbf x mathbf a cdot mathbf x begin bmatrix a 1 amp cdots amp a n end bmatrix begin bmatrix x 1 vdots x n end bmatrix Trace of a square matrix Edit The trace tr A displaystyle operatorname tr A of a square matrix A displaystyle A is the sum of all elements on its main diagonal Matrices can be multiplied by scalars and two matrices of the same dimension can be added together these operations make a vector space from the set of all n n displaystyle n times n matrices The trace is a linear functional on this space because tr s A s tr A displaystyle operatorname tr sA s operatorname tr A and tr A B tr A tr B displaystyle operatorname tr A B operatorname tr A operatorname tr B for all scalars s displaystyle s and all n n displaystyle n times n matrices A and B displaystyle A text and B Definite Integration Edit Linear functionals first appeared in functional analysis the study of vector spaces of functions A typical example of a linear functional is integration the linear transformation defined by the Riemann integralI f a b f x d x displaystyle I f int a b f x dx is a linear functional from the vector space C a b displaystyle C a b of continuous functions on the interval a b displaystyle a b to the real numbers The linearity of I displaystyle I follows from the standard facts about the integral I f g a b f x g x d x a b f x d x a b g x d x I f I g I a f a b a f x d x a a b f x d x a I f displaystyle begin aligned I f g amp int a b f x g x dx int a b f x dx int a b g x dx I f I g I alpha f amp int a b alpha f x dx alpha int a b f x dx alpha I f end aligned Evaluation Edit Let P n displaystyle P n denote the vector space of real valued polynomial functions of degree n displaystyle leq n defined on an interval a b displaystyle a b If c a b displaystyle c in a b then let ev c P n R displaystyle operatorname ev c P n to mathbb R be the evaluation functionalev c f f c displaystyle operatorname ev c f f c The mapping f f c displaystyle f mapsto f c is linear since f g c f c g c a f c a f c displaystyle begin aligned f g c amp f c g c alpha f c amp alpha f c end aligned If x 0 x n displaystyle x 0 ldots x n are n 1 displaystyle n 1 distinct points in a b displaystyle a b then the evaluation functionals ev x i displaystyle operatorname ev x i i 0 n displaystyle i 0 ldots n form a basis of the dual space of P n displaystyle P n Lax 1996 proves this last fact using Lagrange interpolation Non example Edit A function f displaystyle f having the equation of a line f x a r x displaystyle f x a rx with a 0 displaystyle a neq 0 for example f x 1 2 x displaystyle f x 1 2x is not a linear functional on R displaystyle mathbb R since it is not linear nb 1 It is however affine linear Visualization Edit Geometric interpretation of a 1 form a as a stack of hyperplanes of constant value each corresponding to those vectors that a maps to a given scalar value shown next to it along with the sense of increase The zero plane is through the origin In finite dimensions a linear functional can be visualized in terms of its level sets the sets of vectors which map to a given value In three dimensions the level sets of a linear functional are a family of mutually parallel planes in higher dimensions they are parallel hyperplanes This method of visualizing linear functionals is sometimes introduced in general relativity texts such as Gravitation by Misner Thorne amp Wheeler 1973 Applications EditApplication to quadrature Edit If x 0 x n displaystyle x 0 ldots x n are n 1 displaystyle n 1 distinct points in a b then the linear functionals ev x i f f x i displaystyle operatorname ev x i f mapsto f left x i right defined above form a basis of the dual space of Pn the space of polynomials of degree n displaystyle leq n The integration functional I is also a linear functional on Pn and so can be expressed as a linear combination of these basis elements In symbols there are coefficients a 0 a n displaystyle a 0 ldots a n for whichI f a 0 f x 0 a 1 f x 1 a n f x n displaystyle I f a 0 f x 0 a 1 f x 1 dots a n f x n for all f P n displaystyle f in P n This forms the foundation of the theory of numerical quadrature 6 In quantum mechanics Edit Linear functionals are particularly important in quantum mechanics Quantum mechanical systems are represented by Hilbert spaces which are anti isomorphic to their own dual spaces A state of a quantum mechanical system can be identified with a linear functional For more information see bra ket notation Distributions Edit In the theory of generalized functions certain kinds of generalized functions called distributions can be realized as linear functionals on spaces of test functions Dual vectors and bilinear forms Edit Linear functionals 1 forms a b and their sum s and vectors u v w in 3d Euclidean space The number of 1 form hyperplanes intersected by a vector equals the inner product 7 Every non degenerate bilinear form on a finite dimensional vector space V induces an isomorphism V V v v such thatv w v w w V displaystyle v w langle v w rangle quad forall w in V where the bilinear form on V is denoted displaystyle langle cdot cdot rangle for instance in Euclidean space v w v w displaystyle langle v w rangle v cdot w is the dot product of v and w The inverse isomorphism is V V v v where v is the unique element of V such that v w v w displaystyle langle v w rangle v w for all w V displaystyle w in V The above defined vector v V is said to be the dual vector of v V displaystyle v in V In an infinite dimensional Hilbert space analogous results hold by the Riesz representation theorem There is a mapping V V from V into its continuous dual space V Relationship to bases EditBelow we assume that the dimension is finite For a discussion of analogous results in infinite dimensions see Schauder basis Basis of the dual space Edit Let the vector space V have a basis e 1 e 2 e n displaystyle mathbf e 1 mathbf e 2 dots mathbf e n not necessarily orthogonal Then the dual space V displaystyle V has a basis w 1 w 2 w n displaystyle tilde omega 1 tilde omega 2 dots tilde omega n called the dual basis defined by the special property thatw i e j 1 if i j 0 if i j displaystyle tilde omega i mathbf e j begin cases 1 amp text if i j 0 amp text if i neq j end cases Or more succinctly w i e j d i j displaystyle tilde omega i mathbf e j delta ij where d is the Kronecker delta Here the superscripts of the basis functionals are not exponents but are instead contravariant indices A linear functional u displaystyle tilde u belonging to the dual space V displaystyle tilde V can be expressed as a linear combination of basis functionals with coefficients components ui u i 1 n u i w i displaystyle tilde u sum i 1 n u i tilde omega i Then applying the functional u displaystyle tilde u to a basis vector e j displaystyle mathbf e j yieldsu e j i 1 n u i w i e j i u i w i e j displaystyle tilde u mathbf e j sum i 1 n left u i tilde omega i right mathbf e j sum i u i left tilde omega i left mathbf e j right right due to linearity of scalar multiples of functionals and pointwise linearity of sums of functionals Thenu e j i u i w i e j i u i d i j u j displaystyle begin aligned tilde u mathbf e j amp sum i u i left tilde omega i left mathbf e j right right amp sum i u i delta ij amp u j end aligned So each component of a linear functional can be extracted by applying the functional to the corresponding basis vector The dual basis and inner product Edit When the space V carries an inner product then it is possible to write explicitly a formula for the dual basis of a given basis Let V have not necessarily orthogonal basis e 1 e n displaystyle mathbf e 1 dots mathbf e n In three dimensions n 3 the dual basis can be written explicitlyw i v 1 2 j 1 3 k 1 3 e i j k e j e k e 1 e 2 e 3 v displaystyle tilde omega i mathbf v frac 1 2 left langle frac sum j 1 3 sum k 1 3 varepsilon ijk mathbf e j times mathbf e k mathbf e 1 cdot mathbf e 2 times mathbf e 3 mathbf v right rangle for i 1 2 3 displaystyle i 1 2 3 where e is the Levi Civita symbol and displaystyle langle cdot cdot rangle the inner product or dot product on V In higher dimensions this generalizes as followsw i v 1 i 2 lt i 3 lt lt i n n e i i 2 i n e i 2 e i n e 1 e n v displaystyle tilde omega i mathbf v left langle frac sum 1 leq i 2 lt i 3 lt dots lt i n leq n varepsilon ii 2 dots i n star mathbf e i 2 wedge cdots wedge mathbf e i n star mathbf e 1 wedge cdots wedge mathbf e n mathbf v right rangle where displaystyle star is the Hodge star operator Over a ring EditModules over a ring are generalizations of vector spaces which removes the restriction that coefficients belong to a field Given a module M over a ring R a linear form on M is a linear map from M to R where the latter is considered as a module over itself The space of linear forms is always denoted Homk V k whether k is a field or not It is an right module if V is a left module The existence of enough linear forms on a module is equivalent to projectivity 8 Dual Basis Lemma An R module M is projective if and only if there exists a subset A M displaystyle A subset M and linear forms f a a A displaystyle f a mid a in A such that for every x M displaystyle x in M only finitely many f a x displaystyle f a x are nonzero andx a A f a x a displaystyle x sum a in A f a x a Change of field EditSee also Linear complex structure and Complexification Suppose that X displaystyle X is a vector space over C displaystyle mathbb C Restricting scalar multiplication to R displaystyle mathbb R gives rise to a real vector space 9 X R displaystyle X mathbb R called the realification of X displaystyle X Any vector space X displaystyle X over C displaystyle mathbb C is also a vector space over R displaystyle mathbb R endowed with a complex structure that is there exists a real vector subspace X R displaystyle X mathbb R such that we can formally write X X R X R i displaystyle X X mathbb R oplus X mathbb R i as R displaystyle mathbb R vector spaces Real versus complex linear functionals Edit Every linear functional on X displaystyle X is complex valued while every linear functional on X R displaystyle X mathbb R is real valued If dim X 0 displaystyle dim X neq 0 then a linear functional on either one of X displaystyle X or X R displaystyle X mathbb R is non trivial meaning not identically 0 displaystyle 0 if and only if it is surjective because if f x 0 displaystyle varphi x neq 0 then for any scalar s displaystyle s f s f x x s displaystyle varphi left s varphi x x right s where the image of a linear functional on X displaystyle X is C displaystyle mathbb C while the image of a linear functional on X R displaystyle X mathbb R is R displaystyle mathbb R Consequently the only function on X displaystyle X that is both a linear functional on X displaystyle X and a linear function on X R displaystyle X mathbb R is the trivial functional in other words X X R 0 displaystyle X cap X mathbb R 0 where displaystyle cdot denotes the space s algebraic dual space However every C displaystyle mathbb C linear functional on X displaystyle X is an R displaystyle mathbb R linear operator meaning that it is additive and homogeneous over R displaystyle mathbb R but unless it is identically 0 displaystyle 0 it is not an R displaystyle mathbb R linear functional on X displaystyle X because its range which is C displaystyle mathbb C is 2 dimensional over R displaystyle mathbb R Conversely a non zero R displaystyle mathbb R linear functional has range too small to be a C displaystyle mathbb C linear functional as well Real and imaginary parts Edit If f X displaystyle varphi in X then denote its real part by f R Re f displaystyle varphi mathbb R operatorname Re varphi and its imaginary part by f i Im f displaystyle varphi i operatorname Im varphi Then f R X R displaystyle varphi mathbb R X to mathbb R and f i X R displaystyle varphi i X to mathbb R are linear functionals on X R displaystyle X mathbb R and f f R i f i displaystyle varphi varphi mathbb R i varphi i The fact that z Re z i Re i z Im i z i Im z displaystyle z operatorname Re z i operatorname Re iz operatorname Im iz i operatorname Im z for all z C displaystyle z in mathbb C implies that for all x X displaystyle x in X 9 f x f R x i f R i x f i i x i f i x displaystyle begin alignedat 4 varphi x amp varphi mathbb R x i varphi mathbb R ix amp varphi i ix i varphi i x end alignedat and consequently that f i x f R i x displaystyle varphi i x varphi mathbb R ix and f R x f i i x displaystyle varphi mathbb R x varphi i ix 10 The assignment f f R displaystyle varphi mapsto varphi mathbb R defines a bijective 10 R displaystyle mathbb R linear operator X X R displaystyle X to X mathbb R whose inverse is the map L X R X displaystyle L bullet X mathbb R to X defined by the assignment g L g displaystyle g mapsto L g that sends g X R R displaystyle g X mathbb R to mathbb R to the linear functional L g X C displaystyle L g X to mathbb C defined byL g x g x i g i x for all x X displaystyle L g x g x ig ix quad text for all x in X The real part of L g displaystyle L g is g displaystyle g and the bijection L X R X displaystyle L bullet X mathbb R to X is an R displaystyle mathbb R linear operator meaning that L g h L g L h displaystyle L g h L g L h and L r g r L g displaystyle L rg rL g for all r R displaystyle r in mathbb R and g h X R displaystyle g h in X mathbb R 10 Similarly for the imaginary part the assignment f f i displaystyle varphi mapsto varphi i induces an R displaystyle mathbb R linear bijection X X R displaystyle X to X mathbb R whose inverse is the map X R X displaystyle X mathbb R to X defined by sending I X R displaystyle I in X mathbb R to the linear functional on X displaystyle X defined by x I i x i I x displaystyle x mapsto I ix iI x This relationship was discovered by Henry Lowig in 1934 although it is usually credited to F Murray 11 and can be generalized to arbitrary finite extensions of a field in the natural way It has many important consequences some of which will now be described Properties and relationships Edit Suppose f X C displaystyle varphi X to mathbb C is a linear functional on X displaystyle X with real part f R Re f displaystyle varphi mathbb R operatorname Re varphi and imaginary part f i Im f displaystyle varphi i operatorname Im varphi Then f 0 displaystyle varphi 0 if and only if f R 0 displaystyle varphi mathbb R 0 if and only if f i 0 displaystyle varphi i 0 Assume that X displaystyle X is a topological vector space Then f displaystyle varphi is continuous if and only if its real part f R displaystyle varphi mathbb R is continuous if and only if f displaystyle varphi s imaginary part f i displaystyle varphi i is continuous That is either all three of f f R displaystyle varphi varphi mathbb R and f i displaystyle varphi i are continuous or none are continuous This remains true if the word continuous is replaced with the word bounded In particular f X displaystyle varphi in X prime if and only if f R X R displaystyle varphi mathbb R in X mathbb R prime where the prime denotes the space s continuous dual space 9 Let B X displaystyle B subseteq X If u B B displaystyle uB subseteq B for all scalars u C displaystyle u in mathbb C of unit length meaning u 1 displaystyle u 1 then proof 1 12 sup b B f b sup b B f R b displaystyle sup b in B varphi b sup b in B left varphi mathbb R b right Similarly if f i Im f X R displaystyle varphi i operatorname Im varphi X to mathbb R denotes the complex part of f displaystyle varphi then i B B displaystyle iB subseteq B implies sup b B f R b sup b B f i b displaystyle sup b in B left varphi mathbb R b right sup b in B left varphi i b right If X displaystyle X is a normed space with norm displaystyle cdot and if B x X x 1 displaystyle B x in X x leq 1 is the closed unit ball then the supremums above are the operator norms defined in the usual way of f f R displaystyle varphi varphi mathbb R and f i displaystyle varphi i so that 12 f f R f i displaystyle varphi left varphi mathbb R right left varphi i right This conclusion extends to the analogous statement for polars of balanced sets in general topological vector spaces If X displaystyle X is a complex Hilbert space with a complex inner product displaystyle langle cdot cdot rangle that is antilinear in its first coordinate and linear in the second then X R displaystyle X mathbb R becomes a real Hilbert space when endowed with the real part of displaystyle langle cdot cdot rangle Explicitly this real inner product on X R displaystyle X mathbb R is defined by x y R Re x y displaystyle langle x y rangle mathbb R operatorname Re langle x y rangle for all x y X displaystyle x y in X and it induces the same norm on X displaystyle X as displaystyle langle cdot cdot rangle because x x R x x displaystyle sqrt langle x x rangle mathbb R sqrt langle x x rangle for all vectors x displaystyle x Applying the Riesz representation theorem to f X displaystyle varphi in X prime resp to f R X R displaystyle varphi mathbb R in X mathbb R prime guarantees the existence of a unique vector f f X displaystyle f varphi in X resp f f R X R displaystyle f varphi mathbb R in X mathbb R such that f x f f x displaystyle varphi x left langle f varphi x right rangle resp f R x f f R x R displaystyle varphi mathbb R x left langle f varphi mathbb R x right rangle mathbb R for all vectors x displaystyle x The theorem also guarantees that f f f X displaystyle left f varphi right varphi X prime and f f R f R X R displaystyle left f varphi mathbb R right left varphi mathbb R right X mathbb R prime It is readily verified that f f f f R displaystyle f varphi f varphi mathbb R Now f f f f R displaystyle left f varphi right left f varphi mathbb R right and the previous equalities imply that f X f R X R displaystyle varphi X prime left varphi mathbb R right X mathbb R prime which is the same conclusion that was reached above In infinite dimensions EditSee also Continuous linear operatorBelow all vector spaces are over either the real numbers R displaystyle mathbb R or the complex numbers C displaystyle mathbb C If V displaystyle V is a topological vector space the space of continuous linear functionals the continuous dual is often simply called the dual space If V displaystyle V is a Banach space then so is its continuous dual To distinguish the ordinary dual space from the continuous dual space the former is sometimes called the algebraic dual space In finite dimensions every linear functional is continuous so the continuous dual is the same as the algebraic dual but in infinite dimensions the continuous dual is a proper subspace of the algebraic dual A linear functional f on a not necessarily locally convex topological vector space X is continuous if and only if there exists a continuous seminorm p on X such that f p displaystyle f leq p 13 Characterizing closed subspaces Edit Continuous linear functionals have nice properties for analysis a linear functional is continuous if and only if its kernel is closed 14 and a non trivial continuous linear functional is an open map even if the topological vector space is not complete 15 Hyperplanes and maximal subspaces Edit A vector subspace M displaystyle M of X displaystyle X is called maximal if M X displaystyle M subsetneq X meaning M X displaystyle M subseteq X and M X displaystyle M neq X and does not exist a vector subspace N displaystyle N of X displaystyle X such that M N X displaystyle M subsetneq N subsetneq X A vector subspace M displaystyle M of X displaystyle X is maximal if and only if it is the kernel of some non trivial linear functional on X displaystyle X that is M ker f displaystyle M ker f for some linear functional f displaystyle f on X displaystyle X that is not identically 0 An affine hyperplane in X displaystyle X is a translate of a maximal vector subspace By linearity a subset H displaystyle H of X displaystyle X is a affine hyperplane if and only if there exists some non trivial linear functional f displaystyle f on X displaystyle X such that H f 1 1 x X f x 1 displaystyle H f 1 1 x in X f x 1 11 If f displaystyle f is a linear functional and s 0 displaystyle s neq 0 is a scalar then f 1 s s f 1 1 1 s f 1 1 displaystyle f 1 s s left f 1 1 right left frac 1 s f right 1 1 This equality can be used to relate different level sets of f displaystyle f Moreover if f 0 displaystyle f neq 0 then the kernel of f displaystyle f can be reconstructed from the affine hyperplane H f 1 1 displaystyle H f 1 1 by ker f H H displaystyle ker f H H Relationships between multiple linear functionals Edit Any two linear functionals with the same kernel are proportional i e scalar multiples of each other This fact can be generalized to the following theorem Theorem 16 17 If f g 1 g n displaystyle f g 1 ldots g n are linear functionals on X then the following are equivalent f can be written as a linear combination of g 1 g n displaystyle g 1 ldots g n that is there exist scalars s 1 s n displaystyle s 1 ldots s n such that s f s 1 g 1 s n g n displaystyle sf s 1 g 1 cdots s n g n i 1 n ker g i ker f displaystyle bigcap i 1 n ker g i subseteq ker f there exists a real number r such that f x r g i x displaystyle f x leq rg i x for all x X displaystyle x in X and all i 1 n displaystyle i 1 ldots n If f is a non trivial linear functional on X with kernel N x X displaystyle x in X satisfies f x 1 displaystyle f x 1 and U is a balanced subset of X then N x U displaystyle N cap x U varnothing if and only if f u lt 1 displaystyle f u lt 1 for all u U displaystyle u in U 15 Hahn Banach theorem Edit Main article Hahn Banach theorem Any algebraic linear functional on a vector subspace can be extended to the whole space for example the evaluation functionals described above can be extended to the vector space of polynomials on all of R displaystyle mathbb R However this extension cannot always be done while keeping the linear functional continuous The Hahn Banach family of theorems gives conditions under which this extension can be done For example Hahn Banach dominated extension theorem 18 Rudin 1991 Th 3 2 If p X R displaystyle p X to mathbb R is a sublinear function and f M R displaystyle f M to mathbb R is a linear functional on a linear subspace M X displaystyle M subseteq X which is dominated by p on M then there exists a linear extension F X R displaystyle F X to mathbb R of f to the whole space X that is dominated by p i e there exists a linear functional F such thatF m f m displaystyle F m f m for all m M displaystyle m in M and F x p x displaystyle F x leq p x for all x X displaystyle x in X Equicontinuity of families of linear functionals Edit Let X be a topological vector space TVS with continuous dual space X displaystyle X For any subset H of X displaystyle X the following are equivalent 19 H is equicontinuous H is contained in the polar of some neighborhood of 0 displaystyle 0 in X the pre polar of H is a neighborhood of 0 displaystyle 0 in X If H is an equicontinuous subset of X displaystyle X then the following sets are also equicontinuous the weak closure the balanced hull the convex hull and the convex balanced hull 19 Moreover Alaoglu s theorem implies that the weak closure of an equicontinuous subset of X displaystyle X is weak compact and thus that every equicontinuous subset weak relatively compact 20 19 See also EditDiscontinuous linear map Locally convex topological vector space A vector space with a topology defined by convex open sets Positive linear functional ordered vector space with a partial orderPages displaying wikidata descriptions as a fallback Multilinear form Map from multiple vectors to an underlying field of scalars linear in each argument Topological vector space Vector space with a notion of nearnessNotes EditFootnotes Edit For instance f 1 1 a 2 r 2 a 2 r f 1 f 1 displaystyle f 1 1 a 2r neq 2a 2r f 1 f 1 Proofs Edit It is true if B displaystyle B varnothing so assume otherwise Since Re z z displaystyle left operatorname Re z right leq z for all scalars z C displaystyle z in mathbb C it follows that sup x B f R x sup x B f x textstyle sup x in B left varphi mathbb R x right leq sup x in B varphi x If b B displaystyle b in B then let r b 0 displaystyle r b geq 0 and u b C displaystyle u b in mathbb C be such that u b 1 displaystyle left u b right 1 and f b r b u b displaystyle varphi b r b u b where if r b 0 displaystyle r b 0 then take u b 1 displaystyle u b 1 Then f b r b displaystyle varphi b r b and because f 1 u b b r b textstyle varphi left frac 1 u b b right r b is a real number f R 1 u b b f 1 u b b r b textstyle varphi mathbb R left frac 1 u b b right varphi left frac 1 u b b right r b By assumption 1 u b b B textstyle frac 1 u b b in B so f b r b sup x B f R x textstyle varphi b r b leq sup x in B left varphi mathbb R x right Since b B displaystyle b in B was arbitrary it follows that sup x B f x sup x B f R x textstyle sup x in B varphi x leq sup x in B left varphi mathbb R x right displaystyle blacksquare References Edit Axler 2015 p 101 3 92 a b Tu 2011 p 19 3 1 Katznelson amp Katznelson 2008 p 37 2 1 3 Axler 2015 p 101 3 94 Halmos 1974 p 20 13 Lax 1996 Misner Thorne amp Wheeler 1973 p 57 Clark Pete L Commutative Algebra PDF Unpublished Lemma 3 12 a b c Rudin 1991 pp 57 a b c Narici amp Beckenstein 2011 pp 9 11 a b Narici amp Beckenstein 2011 pp 10 11 a b Narici amp Beckenstein 2011 pp 126 128 Narici amp Beckenstein 2011 p 126 Rudin 1991 Theorem 1 18 a b Narici amp Beckenstein 2011 p 128 Rudin 1991 pp 63 64 Narici amp Beckenstein 2011 pp 1 18 Narici amp Beckenstein 2011 pp 177 220 a b c Narici amp Beckenstein 2011 pp 225 273 Schaefer amp Wolff 1999 Corollary 4 3 Bibliography EditAxler Sheldon 2015 Linear Algebra Done Right Undergraduate Texts in Mathematics 3rd ed Springer ISBN 978 3 319 11079 0 Bishop Richard Goldberg Samuel 1980 Chapter 4 Tensor Analysis on Manifolds Dover Publications ISBN 0 486 64039 6 Conway John 1990 A course in functional analysis Graduate Texts in Mathematics Vol 96 2nd ed New York Springer Verlag ISBN 978 0 387 97245 9 OCLC 21195908 Dunford Nelson 1988 Linear operators in Romanian New York Interscience Publishers ISBN 0 471 60848 3 OCLC 18412261 Halmos Paul Richard 1974 Finite Dimensional Vector Spaces Undergraduate Texts in Mathematics 1958 2nd ed Springer ISBN 0 387 90093 4 Katznelson Yitzhak Katznelson Yonatan R 2008 A Terse Introduction to Linear Algebra American Mathematical Society ISBN 978 0 8218 4419 9 Lax Peter 1996 Linear algebra Wiley Interscience ISBN 978 0 471 11111 5 Misner Charles W Thorne Kip S Wheeler John A 1973 Gravitation W H Freeman ISBN 0 7167 0344 0 Narici Lawrence Beckenstein Edward 2011 Topological Vector Spaces Pure and applied mathematics Second ed Boca Raton FL CRC Press ISBN 978 1584888666 OCLC 144216834 Rudin Walter 1991 Functional Analysis International Series in Pure and Applied Mathematics Vol 8 Second ed New York NY McGraw Hill Science Engineering Math ISBN 978 0 07 054236 5 OCLC 21163277 Schaefer Helmut H Wolff Manfred P 1999 Topological Vector Spaces GTM Vol 8 Second ed New York NY Springer New York Imprint Springer ISBN 978 1 4612 7155 0 OCLC 840278135 Schutz Bernard 1985 Chapter 3 A first course in general relativity Cambridge UK Cambridge University Press ISBN 0 521 27703 5 Treves Francois 2006 1967 Topological Vector Spaces Distributions and Kernels Mineola N Y Dover Publications ISBN 978 0 486 45352 1 OCLC 853623322 Tu Loring W 2011 An Introduction to Manifolds Universitext 2nd ed Springer ISBN 978 0 8218 4419 9 Wilansky Albert 2013 Modern Methods in Topological Vector Spaces Mineola New York Dover Publications Inc ISBN 978 0 486 49353 4 OCLC 849801114 Retrieved from https en wikipedia org w index php title Linear form amp oldid 1143452008, wikipedia, wiki, book, books, library,

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